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Learning to Ask: Decision Transformers for Adaptive Quantitative Group Testing

Published: September 1, 2025 | arXiv ID: 2509.01723v1

By: Mahdi Soleymani, Tara Javidi

Potential Business Impact:

Find hidden items using fewer tests.

Business Areas:
A/B Testing Data and Analytics

We consider the problem of quantitative group testing (QGT), where the goal is to recover a sparse binary vector from aggregate subset-sum queries: each query selects a subset of indices and returns the sum of those entries. Information-theoretic results suggest that adaptivity could yield up to a twofold reduction in the total number of required queries, yet no algorithm has surpassed the non-adaptive bound, leaving its practical benefit an open question. In this paper, we reduce the QGT problem to an integer-vector recovery task whose dimension scales with the sparsity of the original problem rather than its full ambient size. We then formulate this reduced recovery task as an offline reinforcement learning problem and employ Decision Transformers to solve it adaptively. By combining these two steps, we obtain an effective end-to-end method for solving the QGT problem. Our experiments show that, for the first time in the literature, our adaptive algorithm reduces the average number of queries below the well-known non-adaptive information-theoretic bound, demonstrating that adaptivity can indeed reduce the number of queries.

Country of Origin
🇺🇸 United States

Page Count
10 pages

Category
Computer Science:
Information Theory